Faculty, Staff and Student Publications
Language
English
Publication Date
11-1-2023
Journal
STROKE: Vascular and Interventional Neurology
DOI
10.1161/SVIN.123.000938
PMID
41585059
PMCID
PMC12778721
PubMedCentral® Posted Date
9-13-2023
PubMedCentral® Full Text Version
Post-print
Abstract
Background: Unruptured cerebral aneurysms (UCAs) have a relatively low prevalence of ≈3%, but detection can prevent devastating consequences of subarachnoid hemorrhage. Here, we assess the performance of a machine learning algorithm to identify UCAs and determine whether routine use of the algorithm improves detection and patient care.
Methods: From a prospectively maintained multicenter registry across 8 certified stroke centers (1 comprehensive and 7 primary), we identified patients who underwent computed tomography angiography for evaluation of possible stroke from March 14, 2021, to November 31, 2021. A convolutional deep neural network (Viz ANEURYSM) trained to identify UCAs at least 4 mm in size analyzed the images, and ground truth was provided by a blinded expert neuroradiologist. The primary outcome was rate of clinical follow-up for UCAs detected by the machine learning algorithm.
Results: Among 1191 computed tomography angiograms performed during the study period, 50 (4.2%) were flagged by the machine learning algorithm as possibly demonstrating a UCA, of which 31 cases were confirmed as true positive (positive predictive value, 62%). There were a total of 36 true aneurysms with 4 cases of multiple aneurysms. Overall, the most common locations included internal carotid artery (42%). Of these cases, 10 (27.8%) were not noted in the clinical radiology report or clinical notes, with a median size of 4.4 mm (interquartile range, 1.6 mm), and 24 (67%) were not referred for follow-up, with median size of 4.4 mm (interquartile range, 4.2 mm). Of the 24 aneurysms not referred for follow-up, 15 (62.5%) had been noted in the radiology report. A total of 33.3% (5/15) of the detected but not referred cases had a diameter >7 mm, with median PHASES score of 7.
Conclusions: UCAs of sizes and intradural locations that require attention and may warrant treatment are frequently missed in routine clinical care. A machine learning algorithm that flags studies and notifies clinicians may minimize missed care opportunities.
Keywords
cerebral aneurysm, CT scans, machine learning, neuroIntervention, radiology
Published Open-Access
yes
Recommended Citation
Kim, Hyun-Woo; Ballekere, Anjan; Ali, Iman; et al., "Machine Learning-Enabled Detection of Unruptured Cerebral Aneurysms Improves Detection Rates and Clinical Care" (2023). Faculty, Staff and Student Publications. 3836.
https://digitalcommons.library.tmc.edu/uthmed_docs/3836